As malware continues to evolve, deep learning models are increasingly used for malware detection and classification, including image based classification. However, adversarial attacks can be used to perturb images so as to evade detection by these models. This study investigates the effectiveness of training deep learning models with Generative Adversarial Network-generated data to improve their robustness against such attacks. Two image conversion methods, byte plot and space-filling curves, were used to represent the malware samples, and a ResNet-50 architecture was used to train models on the image datasets. The models were then tested against a projected gradient descent attack. It was found that without GAN generated data, the models’ ...
Deep learning artificial neural networks are implemented in machines at an increasing rate in order ...
Botnet detectors based on machine learning are potential targets for adversarial evasion attacks. Se...
Generative Adversarial Networks (GANs) have seen significant interest since their introduction in 20...
Malware detection and analysis are important topics in cybersecurity. For efficient malware removal,...
Machine learning is widely used for detecting and classifying malware. Unfortunately, machine learni...
Image classification has undergone a revolution in recent years due to the high performance of new d...
For efficient malware removal, determination of malware threat levels, and damage estimation, malwar...
Majority of the advancement in Deep learning (DL) has occurred in domains such as computer vision, a...
Cyber security is used to protect and safeguard computers and various networks from ill-intended dig...
A generative adversarial network (GAN) is a powerful machine learning concept where both a generativ...
In the past few years, malware classification techniques have shifted from shallow traditional machi...
Malware detection is vital as it ensures that a computer is safe from any kind of malicious software...
Image classification systems are known to be vulnerable to adversarial attacks, which are impercepti...
Machine learning and deep learning techniques for malware detection and classifi- cation play an imp...
To prevent detection, attackers frequently design systems to rearrange and rewrite their malware aut...
Deep learning artificial neural networks are implemented in machines at an increasing rate in order ...
Botnet detectors based on machine learning are potential targets for adversarial evasion attacks. Se...
Generative Adversarial Networks (GANs) have seen significant interest since their introduction in 20...
Malware detection and analysis are important topics in cybersecurity. For efficient malware removal,...
Machine learning is widely used for detecting and classifying malware. Unfortunately, machine learni...
Image classification has undergone a revolution in recent years due to the high performance of new d...
For efficient malware removal, determination of malware threat levels, and damage estimation, malwar...
Majority of the advancement in Deep learning (DL) has occurred in domains such as computer vision, a...
Cyber security is used to protect and safeguard computers and various networks from ill-intended dig...
A generative adversarial network (GAN) is a powerful machine learning concept where both a generativ...
In the past few years, malware classification techniques have shifted from shallow traditional machi...
Malware detection is vital as it ensures that a computer is safe from any kind of malicious software...
Image classification systems are known to be vulnerable to adversarial attacks, which are impercepti...
Machine learning and deep learning techniques for malware detection and classifi- cation play an imp...
To prevent detection, attackers frequently design systems to rearrange and rewrite their malware aut...
Deep learning artificial neural networks are implemented in machines at an increasing rate in order ...
Botnet detectors based on machine learning are potential targets for adversarial evasion attacks. Se...
Generative Adversarial Networks (GANs) have seen significant interest since their introduction in 20...